Sampled-data robust feedback linearization using estimator

Asim Zaheer, Y. Ayaz, Momena Hasan, M. Salman
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Abstract

In this paper, robust control schemes are presented to achieve sampled-data output feedback tracking, for the cases of unknown and known nonlinear minimum phase second order plant (system) models. For known system model case, system output tracks reference trajectory using Extended Kalman Filter (EKF), Unscented Kalman filter (UKF), and Cubature Kalman Filter (CKF). Whereas, for unknown system model case; EKF, UKF and CKF cannot be utilized. For this case, in this paper; State-Space Recursive Least Squares (SSRLS) and Sliding Mode observer (SMO) are employed. SSRLS uses constant velocity model, whereas, SMO requires information about input function only, to track the reference signal. Emulation Design based discrete feedback linearization controller utilizes estimated states to generate control input for plant. The robustness of these sampled-data output feedback control schemes (using estimators) against disturbance and parameter perturbation is demonstrated. It is presented via simulations for magnetic levitation system, that robust tracking is achieved on using estimators (Kalman filters and SMO) in sampled-data output feedback configuration as compared to performing tracking using sampled-data state feedback scheme. Simulation results show that SMO based output feedback tracking is most robust, followed by CKF and EKF based output feedback scheme. UKF based output feedback scheme is robust against external disturbance force, but for case of system parameter perturbation, UKF tracking error takes longer time to converge. SSRLS based scheme behaves poorly in presence of external disturbance force, as SSRLS estimation is based on constant velocity model and not on actual nonlinear system model.
基于估计器的采样数据鲁棒反馈线性化
针对未知和已知非线性最小相位二阶系统模型,提出了实现采样数据输出反馈跟踪的鲁棒控制方案。对于已知的系统模型情况,系统输出使用扩展卡尔曼滤波器(EKF)、无气味卡尔曼滤波器(UKF)和Cubature卡尔曼滤波器(CKF)跟踪参考轨迹。对于未知的系统模型情况;不能使用EKF、UKF和CKF。对于这种情况,在本文中;采用状态空间递推最小二乘(SSRLS)和滑模观测器(SMO)。SSRLS采用恒速模型,而SMO只需要输入函数的信息来跟踪参考信号。基于仿真设计的离散反馈线性化控制器利用预估状态生成被控对象的控制输入。证明了这些采样数据输出反馈控制方案(使用估计器)对扰动和参数扰动的鲁棒性。通过对磁悬浮系统的仿真表明,与使用采样数据状态反馈方案进行跟踪相比,在采样数据输出反馈配置中使用估计器(卡尔曼滤波器和SMO)可以实现鲁棒跟踪。仿真结果表明,基于SMO的输出反馈跟踪鲁棒性最强,其次是基于CKF和EKF的输出反馈方案。基于UKF的输出反馈方案对外部扰动力具有鲁棒性,但在系统参数扰动情况下,UKF跟踪误差需要较长的收敛时间。由于SSRLS估计是基于恒速模型,而不是基于实际的非线性系统模型,因此基于SSRLS的方案在存在外部扰动力时表现不佳。
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